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Automated recognition of pain in cats

Marcelo Feighelstein, Ilan Shimshoni, Lauren Finka, Stélio Pacca Loureiro Luna, Daniel S. Mills, Anna Zamansky

2022Scientific Reports69 citationsDOIOpen Access PDF

Abstract

Facial expressions in non-human animals are closely linked to their internal affective states, with the majority of empirical work focusing on facial shape changes associated with pain. However, existing tools for facial expression analysis are prone to human subjectivity and bias, and in many cases also require special expertise and training. This paper presents the first comparative study of two different paths towards automatizing pain recognition in facial images of domestic short haired cats (n = 29), captured during ovariohysterectomy at different time points corresponding to varying intensities of pain. One approach is based on convolutional neural networks (ResNet50), while the other-on machine learning models based on geometric landmarks analysis inspired by species specific Facial Action Coding Systems (i.e. catFACS). Both types of approaches reach comparable accuracy of above 72%, indicating their potential usefulness as a basis for automating cat pain detection from images.

Topics & Concepts

Facial Action Coding SystemConvolutional neural networkFacial expressionComputer scienceArtificial intelligenceCoding (social sciences)Face (sociological concept)Pattern recognition (psychology)Facial recognition systemCATSMachine learningMathematicsSocial scienceEmbedded systemStatisticsSociologyHuman-Animal Interaction StudiesVeterinary Pharmacology and AnesthesiaAnimal Behavior and Welfare Studies
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